Detection of Non-Technical Losses in Irrigant Consumers through Artificial Intelligence: A Pilot Study

Author:

Vieira Vanessa Gindri1ORCID,Bernardon Daniel Pinheiro1ORCID,Uberti Vinícius André2ORCID,de Figueiredo Rodrigo Marques2ORCID,de Chiara Lucas Melo3,Silva Juliano Andrade3

Affiliation:

1. Graduate Program in Electrical Engineering-PPGEE, Federal University of Santa Maria—UFSM, Santa Maria 97105-900, RS, Brazil

2. Polytechnic School, University of Rio dos Sinos Valley, São Leopoldo 93022-750, RS, Brazil

3. Energy CPFL, Campinas 13088-900, SP, Brazil

Abstract

Non-technical losses (NTLs) verified in the power distribution grids cause great financial losses to power utilities. In rural distribution grids, fraudulent consumers contribute to technical problems. The Southern region in Brazil contains more than 70% of the total rice production and power irrigation systems. These systems operate seasonally in distribution grids with high NTL conditions. This work aimed to present an artificial intelligence-based system to help power distribution companies detect potential consumers causing NTLs. This minimizes the challenge of maintaining compliance with current regulations and ensuring the quality of services and products. In the proposed methodology, historical energy consumption information, meteorological data, satellite images, and data from energy suppliers are processed by artificial intelligence, indicating the suspicious consumer units of NTL. This work presents every step developed in the proposed methodology and the tool application in a pilot area. We detected a high number of consumers responsible for NTLs, with an accuracy of 63% and an average reduction of 78% in the search area. These results corroborated the effectiveness of the tool and instigated the research team to expand the application to other rice production areas.

Funder

CPFL Energia

Coordenação de Aperfeiçoamento de Pessoal de Nível Superior—Brasil

Publisher

MDPI AG

Subject

Energy (miscellaneous),Energy Engineering and Power Technology,Renewable Energy, Sustainability and the Environment,Electrical and Electronic Engineering,Control and Optimization,Engineering (miscellaneous),Building and Construction

Reference36 articles.

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2. Shah, A., Mesbah, W., and Al-Awami, A.T. (2021, January 16–18). An algorithm for detaching technical losses from non-technical losses in distribution systems. Proceedings of the 2021 IEEE Power & Energy Society Innovative Smart Grid Technologies Conference (ISGT), Washington, DC, USA.

3. ANA (2017). Atlas Irrigação: Uso da Água na Agricultura Irrigada, Technical Report.

4. SOSBAI (2018). Arroz Irrigado: Recomendações Técnicas da Pesquisa para o Sul do Brasil, Sociedade Sul-Brasileira de Arroz Irrigado. Technical Report.

5. ANEEL (2022, October 05). Perdas de Energia eléTrica na Distribuição, Available online: https://git.aneel.gov.br/publico/centralconteudo/-/raw/main/relatorioseindicadores/tarifaeconomico/Relatorio_Perdas_Energia.pdf.

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